Generalizing Scientific Machine Learning and Differentiable Simulation Beyond Continuous Models
Offered By: Inside Livermore Lab via YouTube
Course Description
Overview
Explore the frontiers of scientific machine learning (SciML) and differentiable simulation in this 58-minute lecture from the Inside Livermore Lab series. Delve into the mathematical aspects of generalizing differentiable simulation beyond continuous models, examining cases such as chaotic simulations, stochastic simulations like particle filters and agent-based models, and solving inverse problems of Bayesian inverse problems. Discover the evolving numerical stability issues, implementation challenges, and intriguing mathematical nuances emerging as differentiable programming capabilities gain wider adoption. Learn from Dr. Chris Rackauckas, a leading expert in mechanistic machine learning, as he shares insights from his work on accelerating NASA Launch Services simulations and HVAC simulation. Gain valuable knowledge about the expanding scope of SciML and its potential applications in various scientific domains.
Syllabus
DDPS|Generalizing Scientific Machine Learning and Differentiable Simulation Beyond Continuous models
Taught by
Inside Livermore Lab
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